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Jonathon Shlens

Researcher at Google

Publications -  116
Citations -  88633

Jonathon Shlens is an academic researcher from Google. The author has contributed to research in topics: Object detection & Artificial neural network. The author has an hindex of 53, co-authored 116 publications receiving 63492 citations. Previous affiliations of Jonathon Shlens include Salk Institute for Biological Studies.

Papers
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Proceedings Article

Three controversial hypotheses concerning computation in the primate cortex

TL;DR: It is argued that while the authors' higher cognitive functions may interact in a complicated fashion, many of the component functions operate through well-defined interfaces and are built on a neural substrate that scales easily under the control of a modular genetic architecture.
Posted Content

Recurrent Segmentation for Variable Computational Budgets

TL;DR: A recurrent neural network that successively improves prediction quality with each iteration and may be deployed across a range of computational budgets by merely running the model for a variable number of iterations.
Posted Content

Scene Transformer: A unified multi-task model for behavior prediction and planning

TL;DR: In this paper, a model for predicting the behavior of all agents jointly in real-world driving environments in a unified manner is proposed, where a masking strategy is used to query a single model to predict agent behavior in many ways.
Patent

Mechanism for automatic quantification of multimedia production quality

TL;DR: In this paper, a mechanism for automatic quantification of multimedia production quality is presented, which includes assembling data samples from users, the data samples indicating a relative production quality of a set of content items based on a comparison of production quality between content items in the set, extracting content features from each of the content items, and learning a statistical model on the extracted content features.
Posted Content

Pseudo-labeling for Scalable 3D Object Detection.

TL;DR: In this article, the authors demonstrate that pseudo-labeling for 3D object detection is an effective way to exploit less expensive and more widely available unlabeled data, and can lead to performance gains across various architectures, data augmentation strategies, and sizes of the labeled dataset.